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SOM과 LSTM을 활용한 지역기반의 부동산 가격 예측
Real Estate Price Forecasting by Exploiting the Regional Analysis Based on SOM and LSTM 원문보기

정보시스템연구 = The Journal of information systems, v.30 no.2, 2021년, pp.147 - 163  

신은경 (부산대학교 경영대학) ,  김은미 (경희대학교 스마트관광연구소) ,  홍태호 (부산대학교 경영대학)

Abstract AI-Helper 아이콘AI-Helper

Purpose The study aims to predict real estate prices by utilizing regional characteristics. Since real estate has the characteristic of immobility, the characteristics of a region have a great influence on the price of real estate. In addition, real estate prices are closely related to economic deve...

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표/그림 (10)

참고문헌 (50)

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